Extreme learning machines for reverse engineering of gene regulatory networks from expression time series

被引:28
作者
Rubiolo, M. [1 ,2 ]
Milone, D. H. [1 ]
Stegmayer, G. [1 ]
机构
[1] Consejo Nacl Invest Cient & Tecn, UNL, Res Inst Signals Syst & Computat Intelligence, Sinc I,FICH, Ciudad Univ, RA-3000 Santa Fe, Argentina
[2] FRSF, UTN, Ctr Res & Dev Informat Syst Engn, CIDISI,Syst Engn Dept, RA-3000 Santa Fe, Argentina
关键词
RECONSTRUCTION; INFERENCE; ALGORITHM;
D O I
10.1093/bioinformatics/btx730
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Motivation: The reconstruction of gene regulatory networks (GRNs) from genes profiles has a growing interest in bioinformatics for understanding the complex regulatory mechanisms in cellular systems. GRNs explicitly represent the cause-effect of regulation among a group of genes and its reconstruction is today a challenging computational problem. Several methods were proposed, but most of them require different input sources to provide an acceptable prediction. Thus, it is a great challenge to reconstruct a GRN only from temporal gene expression data. Results: Extreme Learning Machine (ELM) is a new supervised neural model that has gained interest in the last years because of its higher learning rate and better performance than existing supervised models in terms of predictive power. This work proposes a novel approach for GRNs reconstruction in which ELMs are used for modeling the relationships between gene expression time series. Artificial datasets generated with the well-known benchmark tool used in DREAM competitions were used. Real datasets were used for validation of this novel proposal with well-known GRNs underlying the time series. The impact of increasing the size of GRNs was analyzed in detail for the compared methods. The results obtained confirm the superiority of the ELM approach against very recent state-of-the-art methods in the same experimental conditions.
引用
收藏
页码:1253 / 1260
页数:8
相关论文
共 22 条
[1]   A Yeast Synthetic Network for In Vivo Assessment of Reverse-Engineering and Modeling Approaches [J].
Cantone, Irene ;
Marucci, Lucia ;
Iorio, Francesco ;
Ricci, Maria Aurelia ;
Belcastro, Vincenzo ;
Bansal, Mukesh ;
Santini, Stefania ;
di Bernardo, Mario ;
di Bernardo, Diego ;
Cosma, Maria Pia .
CELL, 2009, 137 (01) :172-181
[2]   De novo reconstruction of gene regulatory networks from time series data, an approach based on formal methods [J].
Ceccarelli, Michele ;
Cerulo, Luigi ;
Santone, Antonella .
METHODS, 2014, 69 (03) :298-305
[3]   A review on the computational approaches for gene regulatory network construction [J].
Chai, Lian En ;
Loh, Swee Kuan ;
Low, Swee Thing ;
Mohamad, Mohd Saberi ;
Denis, Safaai ;
Zakaria, Zalmiyah .
COMPUTERS IN BIOLOGY AND MEDICINE, 2014, 48 :55-65
[4]  
Demsar J, 2006, J MACH LEARN RES, V7, P1
[5]   Large-scale mapping and validation of Escherichia coli transcriptional regulation from a compendium of expression profiles [J].
Faith, Jeremiah J. ;
Hayete, Boris ;
Thaden, Joshua T. ;
Mogno, Ilaria ;
Wierzbowski, Jamey ;
Cottarel, Guillaume ;
Kasif, Simon ;
Collins, James J. ;
Gardner, Timothy S. .
PLOS BIOLOGY, 2007, 5 (01) :54-66
[6]   Using Bayesian networks to analyze expression data [J].
Friedman, N ;
Linial, M ;
Nachman, I ;
Pe'er, D .
JOURNAL OF COMPUTATIONAL BIOLOGY, 2000, 7 (3-4) :601-620
[7]   Reverse Engineering of Gene Regulatory Networks: A Comparative Study [J].
Hache, Hendrik ;
Lehrach, Hans ;
Herwig, Ralf .
EURASIP JOURNAL ON BIOINFORMATICS AND SYSTEMS BIOLOGY, 2009, (01)
[8]   Trends in extreme learning machines: A review [J].
Huang, Gao ;
Huang, Guang-Bin ;
Song, Shiji ;
You, Keyou .
NEURAL NETWORKS, 2015, 61 :32-48
[9]   Extreme learning machine: Theory and applications [J].
Huang, Guang-Bin ;
Zhu, Qin-Yu ;
Siew, Chee-Kheong .
NEUROCOMPUTING, 2006, 70 (1-3) :489-501
[10]   Universal approximation using incremental constructive feedforward networks with random hidden nodes [J].
Huang, Guang-Bin ;
Chen, Lei ;
Siew, Chee-Kheong .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 2006, 17 (04) :879-892